DevelSet: Deep Neural Level Set for Instant Mask Optimization

Guojin Chen, Ziyang Yu, Hongduo Liu, Yuzhe Ma, Bei Yu
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引用次数: 16

Abstract

With the feature size continuously shrinking in advanced technology nodes, mask optimization is increasingly crucial in the conventional design flow, accompanied by an explosive growth in prohibitive computational overhead in optical proximity correction (OPC) methods. Recently, inverse lithography technique (ILT) has drawn significant attention and is becoming prevalent in emerging OPC solutions. However, ILT methods are either time-consuming or in weak performance of mask printability and manufacturability. In this paper, we present DevelSet, a GPU and deep neural network (DNN) accelerated level set OPC framework for metal layer. We first improve the conventional level set-based ILT algorithm by introducing the curvature term to reduce mask complexity and applying GPU acceleration to overcome computational bottlenecks. To further enhance printability and fast iterative convergence, we propose a novel deep neural network delicately designed with level set intrinsic principles to facilitate the joint optimization of DNN and GPU accelerated level set optimizer. Experimental results show that DevelSet framework surpasses the state-of-the-art methods in printability and boost the runtime performance achieving instant level (around 1 second).
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用于即时掩码优化的深度神经水平集
随着先进技术节点的特征尺寸不断缩小,掩模优化在传统设计流程中变得越来越重要,同时光学接近校正(OPC)方法的计算开销也在爆炸式增长。最近,逆光刻技术(ILT)引起了人们的极大关注,并在新兴的OPC解决方案中变得越来越普遍。然而,ILT方法要么耗时,要么掩模可打印性和可制造性性能较差。在本文中,我们提出了一个GPU和深度神经网络(DNN)加速的金属层水平集OPC框架developset。我们首先改进了传统的基于水平集的ILT算法,通过引入曲率项来降低掩码复杂度,并使用GPU加速来克服计算瓶颈。为了进一步提高可打印性和快速迭代收敛性,我们提出了一种新的深度神经网络,巧妙地设计了水平集内在原理,以促进DNN和GPU加速水平集优化器的联合优化。实验结果表明,developset框架在可打印性方面超越了目前最先进的方法,并将运行时性能提高到即时水平(约1秒)。
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